Title:Machine learning approach to the neutron star equation of state
Speaker:Yuki Fujimoto, University of Tokyo
Date:July 22, 2020 10:00 AM
Meeting Link:Zoom Meeting
https://zoom.us/j/96556065963?pwd=MCt1YkFPTmdkWWpoNHd5NEU1cDE3dz09
?Meeting ID: 965 5606 5963
Meeting Code:922011
Abstract:We develop a method of machine learning utilizing deep neural networks to estimate the equation of state (EoS) of cold dense matter. EoS is the crucial ingredient for describing neutron stars. We consider here the specific problem to find the most likely EoS using the set of neutron star data from the x-ray telescopes. In this talk, firstly we propose an efficient procedure to deal with this problem, and then we confirm the validity and the accuracy of this method using mock data sets. We apply our method to the currently observed neutron star data, and put a constraint on the EoS. We finally discuss the result in light of the recent neutron star phenomenology.
[1] Y. Fujimoto, K. Fukushima, and K. Murase, Phys. Rev. D 98, 023019 (2018).
[2] Y. Fujimoto, K. Fukushima, and K. Murase, Phys. Rev. D 101, 054016 (2020).